# Copyright 2024 DeepMind Technologies Limited
#
# AlphaFold 3 source code is licensed under CC BY-NC-SA 4.0. To view a copy of
# this license, visit https://creativecommons.org/licenses/by-nc-sa/4.0/
#
# To request access to the AlphaFold 3 model parameters, follow the process set
# out at https://github.com/google-deepmind/alphafold3. You may only use these
# if received directly from Google. Use is subject to terms of use available at
# https://github.com/google-deepmind/alphafold3/blob/main/WEIGHTS_TERMS_OF_USE.md

FROM nvidia/cuda:12.6.0-base-ubuntu22.04

# Some RUN statements are combined together to make Docker build run faster.
# Get latest package listing, install software-properties-common, git and wget.
# git is required for pyproject.toml toolchain's use of CMakeLists.txt.
RUN apt update --quiet \
    && apt install --yes --quiet software-properties-common \
    && apt install --yes --quiet git wget

# Get apt repository of specific Python versions. Then install Python. Tell APT
# this isn't an interactive TTY to avoid timezone prompt when installing.
RUN add-apt-repository ppa:deadsnakes/ppa \
    && DEBIAN_FRONTEND=noninteractive apt install --yes --quiet python3.11 python3-pip python3.11-venv python3.11-dev
RUN python3.11 -m venv /alphafold3_venv
ENV PATH="/hmmer/bin:/alphafold3_venv/bin:$PATH"

# Install HMMER. Do so before copying the source code, so that docker can cache
# the image layer containing HMMER.
RUN mkdir /hmmer_build /hmmer ; \
    wget http://eddylab.org/software/hmmer/hmmer-3.4.tar.gz --directory-prefix /hmmer_build ; \
    (cd /hmmer_build && tar zxf hmmer-3.4.tar.gz && rm hmmer-3.4.tar.gz) ; \
    (cd /hmmer_build/hmmer-3.4 && ./configure --prefix /hmmer) ; \
    (cd /hmmer_build/hmmer-3.4 && make -j8) ; \
    (cd /hmmer_build/hmmer-3.4 && make install) ; \
    (cd /hmmer_build/hmmer-3.4/easel && make install) ; \
    rm -R /hmmer_build

# Copy the AlphaFold 3 source code from the local machine to the container and
# set the working directory to there.
COPY . /app/alphafold
WORKDIR /app/alphafold

# Install the Python dependencies AlphaFold 3 needs.
RUN pip3 install -r dev-requirements.txt
RUN pip3 install --no-deps .
# Build chemical components database (this binary was installed by pip).
RUN build_data

# To work around a known XLA issue causing the compilation time to greatly
# increase, the following environment variable setting XLA flags must be enabled
# when running AlphaFold 3:
ENV XLA_FLAGS="--xla_gpu_enable_triton_gemm=false"
# Memory settings used for folding up to 5,120 tokens on A100 80 GB.
ENV XLA_PYTHON_CLIENT_PREALLOCATE=true
ENV XLA_CLIENT_MEM_FRACTION=0.95

CMD ["python3", "run_alphafold.py"]
